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Bayesian Networks Structure Learning and Its Application to Personalized Recommendation in a B2C Portal

机译:Bayesian网络结构学习及其在B2C门户网站中的个性化推荐中的应用

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Web Intelligence (WI) is a new and active research field in current AI and IT. Personalized recommendation in an intelligent B2C portal is an important research topic in WI. In this paper, we first investigate the architecture of a B2C portal from the viewpoint of conceptual levels of WI. Aiming at data mining of knowledge-level in a B2C portal, we present a new improved learning algorithm of Bayesian Networks, which consists of two major contributions, namely, making the best of lower order Conditional Independence (CI) tests and accelerating search process by means of sort order for parent nodes. By a number of experiments on ALARM datasets, we find that the proposed algorithm is both more efficient and effective than others. We have applied this algorithm to a commodity recommendation system in a B2C portal. Our experimental results demonstrate that the recommendation method based on a Customer Shopping Model (CSM) produced by the new algorithm outperforms some traditional ones in rates of coverage and precision.
机译:Web Intelligence(Wi)是当前AI和IT的新的和活跃的研究领域。智能B2C门户中的个性化推荐是WI的重要研究主题。在本文中,我们从Wi的概念层面调查了B2C门户的架构。针对B2C门户网站中知识级别的数据挖掘,我们提出了一种新的贝叶斯网络学习算法,由两个主要贡献组成,即充分利用下订单条件独立(CI)测试和加速搜索过程父节点排序顺序的手段。通过关于警报数据集的许多实验,我们发现所提出的算法比其他算法更高效且有效。我们已将此算法应用于B2C门户中的商品推荐系统。我们的实验结果表明,基于新算法生产的基于客户购物模型(CSM)的推荐方法在覆盖率和精度的率方面优于一些传统的传统方式。

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